- Machine Learning with R
- Brett Lantz
- 286字
- 2021-07-23 15:49:45
About the Reviewers
Jia Liu holds a Master's degree in Statistics from the University of Maryland, Baltimore County, and is presently a PhD candidate in statistics from Iowa State University. Her research interests include mixed-effects model, Bayesian method, Boostrap method, reliability, design of experiments, machine learning and data mining. She has two year's experience as a student consultant in statistics and two year's internship experience in agriculture and pharmaceutical industry.
Mzabalazo Z. Ngwenya has worked extensively in the field of statistical consulting and currently works as a biometrician. He holds an MSc in Mathematical Statistics from the University of Cape Town and is at present studying for a PhD (at the School of Information Technology, University of Pretoria), in the field of Computational Intelligence. His research interests include statistical computing, machine learning, and spatial statistics. Previously, he was involved in reviewing Learning RStudio for R Statistical Computing (Van de Loo and de Jong, 2012), and R Statistical Application Development by Example beginner's guide (Prabhanjan Narayanachar Tattar , 2013).
Abhinav Upadhyay finished his Bachelor's degree in 2011 with a major in Information Technology. His main areas of interest include machine learning and information retrieval.
In 2011, he worked for the NetBSD Foundation as part of the Google Summer of Code program. During that period, he wrote a search engine for Unix manual pages. This project resulted in a new implementation of the apropos utility for NetBSD.
Currently, he is working as a Development Engineer for SocialTwist. His day-to-day work involves writing system level tools and frameworks to manage the product infrastructure.
He is also an open source enthusiast and quite active in the community. In his free time, he maintains and contributes to several open source projects.
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